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人工智能应用于胸部X光检查:急诊科评估肺炎鉴别诊断的可靠工具。

Artificial Intelligence Applied to Chest X-ray: A Reliable Tool to Assess the Differential Diagnosis of Lung Pneumonia in the Emergency Department.

作者信息

Ippolito Davide, Maino Cesare, Gandola Davide, Franco Paolo Niccolò, Miron Radu, Barbu Vlad, Bologna Marco, Corso Rocco, Breaban Mihaela Elena

机构信息

Department of Diagnostic Radiology, Fondazione IRCCS San Gerardo dei Tintori, Via Pergolesi 33, 20900 Monza, Italy.

School of Medicine, University of Milano-Bicocca, Via Cadore 48, 20900 Monza, Italy.

出版信息

Diseases. 2023 Nov 20;11(4):171. doi: 10.3390/diseases11040171.

Abstract

BACKGROUND

Considering the large number of patients with pulmonary symptoms admitted to the emergency department daily, it is essential to diagnose them correctly. It is necessary to quickly solve the differential diagnosis between COVID-19 and typical bacterial pneumonia to address them with the best management possible. In this setting, an artificial intelligence (AI) system can help radiologists detect pneumonia more quickly.

METHODS

We aimed to test the diagnostic performance of an AI system in detecting COVID-19 pneumonia and typical bacterial pneumonia in patients who underwent a chest X-ray (CXR) and were admitted to the emergency department. The final dataset was composed of three sub-datasets: the first included all patients positive for COVID-19 pneumonia (n = 1140, namely "COVID-19+"), the second one included all patients with typical bacterial pneumonia (n = 500, "pneumonia+"), and the third one was composed of healthy subjects (n = 1000). Two radiologists were blinded to demographic, clinical, and laboratory data. The developed AI system was used to evaluate all CXRs randomly and was asked to classify them into three classes. Cohen's κ was used for interrater reliability analysis. The AI system's diagnostic accuracy was evaluated using a confusion matrix, and 95%CIs were reported as appropriate.

RESULTS

The interrater reliability analysis between the most experienced radiologist and the AI system reported an almost perfect agreement for COVID-19+ (κ = 0.822) and pneumonia+ (κ = 0.913). We found 96% sensitivity (95% CIs = 94.9-96.9) and 79.8% specificity (76.4-82.9) for the radiologist and 94.7% sensitivity (93.4-95.8) and 80.2% specificity (76.9-83.2) for the AI system in the detection of COVID-19+. Moreover, we found 97.9% sensitivity (98-99.3) and 88% specificity (83.5-91.7) for the radiologist and 97.5% sensitivity (96.5-98.3) and 83.9% specificity (79-87.9) for the AI system in the detection of pneumonia+ patients. Finally, the AI system reached an accuracy of 93.8%, with a misclassification rate of 6.2% and weighted-F1 of 93.8% in detecting COVID+, pneumonia+, and healthy subjects.

CONCLUSIONS

The AI system demonstrated excellent diagnostic performance in identifying COVID-19 and typical bacterial pneumonia in CXRs acquired in the emergency setting.

摘要

背景

鉴于每天有大量有肺部症状的患者到急诊科就诊,正确诊断他们至关重要。快速解决新型冠状病毒肺炎(COVID-19)与典型细菌性肺炎之间的鉴别诊断问题,以便采用最佳管理方法对其进行治疗。在这种情况下,人工智能(AI)系统可以帮助放射科医生更快地检测出肺炎。

方法

我们旨在测试一个AI系统在检测接受胸部X线(CXR)检查并入住急诊科的患者的COVID-19肺炎和典型细菌性肺炎方面的诊断性能。最终数据集由三个子数据集组成:第一个包括所有COVID-19肺炎阳性患者(n = 1140,即“COVID-19+”),第二个包括所有典型细菌性肺炎患者(n = 500,“肺炎+”),第三个由健康受试者组成(n = 1000)。两名放射科医生对人口统计学、临床和实验室数据不知情。使用开发的AI系统对所有CXR进行随机评估,并要求将它们分为三类。使用Cohen's κ进行评分者间可靠性分析。使用混淆矩阵评估AI系统的诊断准确性,并在适当情况下报告95%置信区间(CIs)。

结果

经验最丰富的放射科医生与AI系统之间的评分者间可靠性分析显示,对于COVID-19+(κ = 0.822)和肺炎+(κ = 0.913)几乎完全一致。我们发现,在检测COVID-19+方面,放射科医生的灵敏度为96%(95% CIs = 94.9 - 96.9),特异度为79.8%(76.4 - 82.9);AI系统的灵敏度为94.7%(93.4 - 95.8),特异度为80.2%(76.9 - 83.2)。此外,在检测肺炎+患者方面,放射科医生的灵敏度为97.9%(98 - 99.3),特异度为88%(83.5 - 91.7);AI系统的灵敏度为97.5%(96.5 - 98.3),特异度为83.9%(79 - 87.9)。最后,在检测COVID+、肺炎+和健康受试者时,AI系统的准确率达到93.8%误分类率为6.2%,加权F1为93.8%。

结论

该AI系统在识别急诊科获取的CXR中的COVID-19和典型细菌性肺炎方面表现出优异的诊断性能。

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